| Literature DB >> 27604408 |
Meng Li1,2, Weixing Feng1, Xinjun Zhang2, Yuedong Yang3, Kejun Wang1, Matthew Mort4, David N Cooper4, Yue Wang5, Yaoqi Zhou3, Yunlong Liu2,5,6.
Abstract
Alternative splicing (AS) is a closely regulated process that allows a single gene to encode multiple protein isoforms, thereby contributing to the diversity of the proteome. Dysregulation of the splicing process has been found to be associated with many inherited diseases. However, among the pathogenic AS events, there are numerous "passenger" events whose inclusion or exclusion does not lead to significant changes with respect to protein function. In this study, we evaluate the secondary and tertiary structural features of proteins associated with disease-causing and neutral AS events, and show that several structural features are strongly associated with the pathological impact of exon inclusion. We further develop a machine-learning-based computational model, ExonImpact, for prioritizing and evaluating the functional consequences of hitherto uncharacterized AS events. We evaluated our model using several strategies including cross-validation, and data from the Gene-Tissue Expression (GTEx) and ClinVar databases. ExonImpact is freely available at http://watson.compbio.iupui.edu/ExonImpact.Entities:
Keywords: alternative splicing; disease; exon impaction; machine learning
Mesh:
Substances:
Year: 2016 PMID: 27604408 PMCID: PMC5390777 DOI: 10.1002/humu.23111
Source DB: PubMed Journal: Hum Mutat ISSN: 1059-7794 Impact factor: 4.878